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Footprint Recognition with Principal Component Analysis and Independent Component Analysis

机译:具有主成分分析和独立分量分析的脚印识别

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摘要

The finger print recognition, face recognition, hand geometry, iris recognition, voice scan, signature, retina scan and several other biometric patterns are being used for recognition of an individual. Human footprint is one of the relatively new physiological biometrics due to its stable and unique characteristics. The texture and foot shape information of footprint offers one of the powerful means in personal recognition. This work proposes a footprint based biometric identification of an individual by extracting texture and shape based features using Principal Component Analysis (PCA) and Independent Component Analysis (ICA) linear projection techniques. PCA is a commonly used technique for data classification and dimensionality reduction and ICA is one of the most widely used blind source separation technique for revealing hidden factors that underlie sets of random variables, measurements, or signals. In this study PCA and ICA have been compared for footprint recognition using distance classification techniques such as Euclidean distance, city block, cosine and correlation. Experimental results show that ICA performs better than PCA for footprint recognition.
机译:手指打印识别,面部识别,手几何,虹膜识别,语音扫描,签名,视网膜扫描和几种其他生物识别模式用于识别个体。由于其稳定和独特的特性,人类足迹是相对新的生理生物识别性之一。足迹的纹理和脚形信息提供了个人识别的强大手段之一。这项工作提出了通过使用主成分分析(PCA)和独立分量分析(ICA)线性投影技术提取纹理和形状的特征来提出基于基于个体的基于占地面积的生物识别。 PCA是一种用于数据分类的常用技术,减少维度,ICA是最广泛使用的盲源分离技术之一,用于揭示底层随机变量,测量或信号的隐藏因素。在本研究中,使用距离分类技术(如欧几里德距离,城市块,余弦和相关性)进行比较PCA和ICA。实验结果表明,ICA比PCA更好地进行足迹识别。

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